THE IMPORTANCE OF A UNIFIED DATA SPACE IN DATA PROCESSING AND METHODS FOR ITS DEVELOPMENT

Authors

  • Ma’mura Gayratovna Ergasheva Pedagogue, Department of general technical sciences Asia International University

DOI:

https://doi.org/10.55640/

Keywords:

Unified Data Space, data processing, data integration, data management, cloud computing, digital transformation, data standardization, information systems, data security, data analysis

Abstract

This article discusses the importance of a Unified Data Space in modern data processing and explains the main methods for its development. A Unified Data Space helps organizations collect, store, and manage data from different sources in one system. It improves data accuracy, accessibility, and security, which are essential for effective decision-making. The article also highlights how unified data systems reduce data duplication and increase the speed of information exchange between departments. In addition, it describes key methods for developing such systems, including data integration technologies, cloud computing solutions, and standardization of data formats. The study shows that implementing a Unified Data Space helps organizations work more efficiently, supports digital transformation, and improves the quality of data analysis. Overall, the article emphasizes that unified data management is an important part of modern information technologies.

Downloads

Download data is not yet available.

References

1.Bonnefoy P.-Y., Chaize E., Mansuy R., Tazi M. The Definitive Guide to Data Integration. Birmingham: Packt Publishing, 2024.

2.Wells D. Data Interoperability: Unified Architecture Connecting All of Your Data. New York: CRC Press, 2021.

3.Jiang Sh., Yu Sh. Research on Data Integration in Dataspace. London: Scientific.net, 2020.

4.Jarke M., Quix C. Federated Data Integration in Data Spaces. Cham: Springer, 2022.

5.Auer S. Semantic Integration and Interoperability. Cham: Springer, 2022.

6.Nadal S. et al. An Integration-Oriented Ontology to Govern Evolution in Big Data Ecosystems. Berlin: Springer, 2018.

7.Lu J., et al. UDBMS: Road to Unification for Multi-model Data Management. Berlin: Springer, 2016.

8.Kotis K., Athanasakis I., Vouros G. Semantic Integration & Single-Site Opening of Multiple Governmental Data Sources. arXiv, 2014.

9.Understanding Data Spaces: A Systematic Mapping Study of Foundations, Technical Building Blocks, and Sectoral Adoption. Amsterdam: Elsevier, 2025.

Downloads

Published

2026-02-24

How to Cite

THE IMPORTANCE OF A UNIFIED DATA SPACE IN DATA PROCESSING AND METHODS FOR ITS DEVELOPMENT. (2026). Journal of Multidisciplinary Sciences and Innovations, 5(02), 2115-2119. https://doi.org/10.55640/

Similar Articles

1-10 of 2778

You may also start an advanced similarity search for this article.